Vision-language models overestimate common ground in asymmetric dialogues by treating map content as evidence of mutual understanding rather than tracking how grounding unfolds through interaction.
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Seeing Is Not Sharing: Some Vision-Language Models Overestimate Common Ground in Asymmetric Dialogue
Vision-language models overestimate common ground in asymmetric dialogues by treating map content as evidence of mutual understanding rather than tracking how grounding unfolds through interaction.